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GCS: Graph-based Coordination Strategy for Multi-Agent Reinforcement Learning

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Many real-world scenarios involve a team of agents that have to coordinate their policies to achieve a shared goal. Previous studies mainly focus on decentralized control to maximize a common reward and barely consider the coordination among control policies, which is critical in dynamic and complicated environments. In this work, we propose factorizing the joint team policy into a graph generator and graph-based coordinated policy to enable coordinated behaviours among agents. The graph generator adopts an encoder-decoder framework that outputs directed acyclic graphs (DAGs) to capture the underlying dynamic decision structure. We also apply the DAGness-constrained and DAG depth-constrained optimization in the graph generator to balance efficiency and performance. The graph-based coordinated policy exploits the generated decision structure. The graph generator and coordinated policy are trained simultaneously to maximize the discounted return. Empirical evaluations on Collaborative Gaussian Squeeze, Cooperative Navigation, and Google Research Football demonstrate the superiority of the proposed method.

Jingqing Ruan, Yali Du, Xuantang Xiong, Dengpeng Xing, Xiyun Li, Linghui Meng, Haifeng Zhang, Jun Wang, Bo Xu• 2022

Related benchmarks

TaskDatasetResultRank
Cooperative NavigationCooperative Navigation N=3 agents
Communication Ratio100
7
Cooperative NavigationCooperative Navigation N=5 agents
Fraction of Communication100
7
Cooperative NavigationCooperative Navigation N=10 agents
FComm1
7
Cooperative NavigationCooperative Navigation N=7 agents
FComm Ratio100
7
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